Modeling the Asymmetric Reinsurance Revenues Data using the Partially Autoregressive Time Series Model: Statistical Forecasting and Residuals Analysis

IF 1.1 Q3 STATISTICS & PROBABILITY Pakistan Journal of Statistics and Operation Research Pub Date : 2023-09-02 DOI:10.18187/pjsor.v19i3.4123
Salwa L. Alkhayyat, Heba Soltan Mohamed, Nadeem Shafique Butt, H. Yousof, Emadeldin I. A. Ali
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Abstract

The autoregressive model is a representation of a certain kind of random process in statistics, insurance, signal processing, and econometrics; as such, it is used to describe some time-varying processes in nature, economics and insurance, etc. In this article, a novel version of the autoregressive model is proposed, in the so-called the partially autoregressive (PAR(1)) model. The results of the new approach depended on a new algorithm that we formulated to facilitate the process of statistical prediction in light of the rapid developments in time series models. The new algorithm is based on the values of the autocorrelation and partial autocorrelation functions. The new technique is assessed via re-estimating the actual time series values. Finally, the results of the PAR(1) model is compared with the Holt-Winters model under the Ljung-Box test and its corresponding p-value. A comprehensive analysis for the model residuals is presented. The matrix of the autocorrelation analysis for both points forecasting and interval forecasting are given with its relevant plots.
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非对称再保险收入数据的部分自回归时间序列建模:统计预测和残差分析
自回归模型是统计学、保险学、信号处理和计量经济学中对某一类随机过程的表征;因此,它被用来描述自然、经济、保险等领域的一些时变过程。本文提出了一种新的自回归模型,即部分自回归(PAR(1))模型。新方法的结果依赖于我们制定的新算法,以促进时间序列模型快速发展的统计预测过程。该算法基于自相关函数和部分自相关函数的值。通过重新估计实际时间序列值来评估新技术。最后,通过Ljung-Box检验将PAR(1)模型与Holt-Winters模型的结果及其对应的p值进行比较。对模型残差进行了综合分析。给出了点预测和区间预测的自相关分析矩阵及其相关图。
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来源期刊
CiteScore
3.30
自引率
26.70%
发文量
53
期刊介绍: Pakistan Journal of Statistics and Operation Research. PJSOR is a peer-reviewed journal, published four times a year. PJSOR publishes refereed research articles and studies that describe the latest research and developments in the area of statistics, operation research and actuarial statistics.
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